利用卷积神经网络对鹰嘴豆镰刀菌枯萎病进行分类和严重程度评估

A. Alzubi, Radha Raghuramapatruni, Pushpa Kumari
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引用次数: 0

摘要

背景:鹰嘴豆叶片的镰刀菌枯萎病是一种常见病,会导致作物减产,给农民带来经济问题。及早发现病害并采取适当的预防措施有助于提高鹰嘴豆的产量。本研究利用卷积神经学习算法提供了一种基于严重程度预测镰刀菌枯萎病的改进方法。方法:本研究利用卷积神经网络(CNN)模型来识别枯萎导致的叶片病害。数据集包含从 Kaggle 获取的 4,339 张鹰嘴豆叶片图像。经过预处理后,数据被送入网络模型进行训练。该模型显示了可接受的分类和准确度指标。结果深度学习方法是一种非常有用的工具,可用于在早期阶段跟踪叶片病害,并帮助农民使用防治方法。拟议的工作通过观察鹰嘴豆叶片形状和颜色的变化来预测严重的镰刀菌病害。通过令人满意的结果,训练和验证精确度显示出平衡的权衡。该模型的总体准确率为 74.79%。混淆矩阵和分类参数提高了模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification and Severity Level Assessment of Fusarium Wilt Disease in Chickpeas using Convolutional Neural Network
Background: The fusarium wilt disease of chickpea leaves is a common illness that leads to economic problems for farmers due decreased crop yield. Early disease detection and the implementation of suitable precautions can help to increase the yield of chickpeas. This study offers an improved method for Fusarium wilt disease prediction based on severity level using a convolutional neural learning algorithm. Methods: The Convolutional Neural Network (CNN) model is utilized in this work to identify leaf disease due to wilting. The dataset contains 4,339 images of chickpea leaves that were obtained from Kaggle. After preprocessing, the data is sent into the network model for training. The model shows acceptable classification and accuracy metrics. Result: Deep learning methods are very useful tools for tracking leaf diseases at their early stages and can help farmers with the use of controlling methods. The proposed work looks for changes in the shape and color of chickpea leaves in order to predict severe fusarium disease. Training and validation accuracies show a balanced trade-off by giving satisfactory outcomes. The model shows an overall accuracy of 74.79%. The confusion matrix and classification parameters increase the model’s performance.
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